François Darmon, Mathieu Aubry, P. Monasse
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引用次数: 7

摘要

我们解决了在图像之间找到准确和鲁棒的关键点对应的问题。我们提出了一种基于学习的方法,通过学习的近似图像匹配来指导局部特征匹配。我们的方法可以将SIFT的结果提升到类似于最先进的深度描述符的水平,例如Superpoint、ContextDesc或D2-Net,并且可以提高这些描述符的性能。我们引入和研究不同层次的监督来学习粗对应。特别地,我们证明了来自极几何的弱监督比更强但更有偏差的点级监督的性能更高,并且是对弱图像级监督的明显改进。我们通过评估YFCC100M数据集上的互联网图像本地化和SUN3D数据集上的室内图像本地化的指导关键点对应关系,在亚琛昼夜基准上进行稳健定位,以及在具有挑战性的条件下使用LTLL历史图像数据进行3D重建,从而展示了我们的方法在各种条件下的优势。
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Learning to Guide Local Feature Matches
We tackle the problem of finding accurate and robust keypoint correspondences between images. We propose a learning-based approach to guide local feature matches via a learned approximate image matching. Our approach can boost the results of SIFT to a level similar to state-of-the-art deep descriptors, such as Superpoint, ContextDesc, or D2-Net and can improve performance for these descriptors. We introduce and study different levels of supervision to learn coarse correspondences. In particular, we show that weak supervision from epipolar geometry leads to performances higher than the stronger but more biased point level supervision and is a clear improvement over weak image level supervision. We demonstrate the benefits of our approach in a variety of conditions by evaluating our guided keypoint correspondences for localization of internet images on the YFCC100M dataset and indoor images on the SUN3D dataset, for robust localization on the Aachen day-night benchmark and for 3D reconstruction in challenging conditions using the LTLL historical image data.
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